CVSep 16, 2016

Radon-Gabor Barcodes for Medical Image Retrieval

arXiv:1609.05118v19 citations
Originality Synthesis-oriented
AI Analysis

This addresses content-based retrieval for medical images, offering incremental improvements in robustness to variations like scale and noise.

The paper tackled medical image retrieval by introducing Radon-Gabor barcodes as binary features, achieving a total error score as low as 322 and about 81% retrieval accuracy on the IRMA x-ray dataset.

In recent years, with the explosion of digital images on the Web, content-based retrieval has emerged as a significant research area. Shapes, textures, edges and segments may play a key role in describing the content of an image. Radon and Gabor transforms are both powerful techniques that have been widely studied to extract shape-texture-based information. The combined Radon-Gabor features may be more robust against scale/rotation variations, presence of noise, and illumination changes. The objective of this paper is to harness the potentials of both Gabor and Radon transforms in order to introduce expressive binary features, called barcodes, for image annotation/tagging tasks. We propose two different techniques: Gabor-of-Radon-Image Barcodes (GRIBCs), and Guided-Radon-of-Gabor Barcodes (GRGBCs). For validation, we employ the IRMA x-ray dataset with 193 classes, containing 12,677 training images and 1,733 test images. A total error score as low as 322 and 330 were achieved for GRGBCs and GRIBCs, respectively. This corresponds to $\approx 81\%$ retrieval accuracy for the first hit.

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